Combining Continuous Smartphone Native Sensors Data Capture and Unsupervised Data Mining Techniques for Behavioral Changes Detection: A Case Series of the Evidence-Based Behavior (eB2) Study
BackgroundThe emergence of smartphones, wearable sensor technologies, and smart homes allows the nonintrusive collection of activity data. Thus, health-related events, such as activities of daily living (ADLs; eg, mobility patterns, feeding, sleeping, ...) can be captured without patients’ active pa...
Main Authors: | Berrouiguet, Sofian, Ramírez, David, Barrigón, María Luisa, Moreno-Muñoz, Pablo, Carmona Camacho, Rodrigo, Baca-García, Enrique, Artés-Rodríguez, Antonio |
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Format: | Article |
Language: | English |
Published: |
JMIR Publications
2018-12-01
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Series: | JMIR mHealth and uHealth |
Online Access: | https://mhealth.jmir.org/2018/12/e197/ |
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